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Lifting the Veil on Visual Information Flow in MLLMs: Unlocking Pathways to Faster Inference

Published 17 Mar 2025 in cs.CV and cs.AI | (2503.13108v1)

Abstract: Multimodal LLMs (MLLMs) improve performance on vision-language tasks by integrating visual features from pre-trained vision encoders into LLMs. However, how MLLMs process and utilize visual information remains unclear. In this paper, a shift in the dominant flow of visual information is uncovered: (1) in shallow layers, strong interactions are observed between image tokens and instruction tokens, where most visual information is injected into instruction tokens to form cross-modal semantic representations; (2) in deeper layers, image tokens primarily interact with each other, aggregating the remaining visual information to optimize semantic representations within visual modality. Based on these insights, we propose Hierarchical Modality-Aware Pruning (HiMAP), a plug-and-play inference acceleration method that dynamically prunes image tokens at specific layers, reducing computational costs by approximately 65% without sacrificing performance. Our findings offer a new understanding of visual information processing in MLLMs and provide a state-of-the-art solution for efficient inference.

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